Atmospheric chemistry models are a central tool to study the impact of chemical constituents on the environment, vegetation and human health. These models split the atmosphere in a large number of grid-boxes and consider the emission of compounds into these boxes and their subsequent transport, deposition, and chemical processing. The chemistry is represented through a series of simultaneous ordinary differential equations, one for each compound. Given the difference in life-times between the chemical compounds (milli-seconds for O1D to years for CH4) these equations are numerically stiff and solving them consists of a significant fraction of the computational burden of a chemistry model. We have investigated a machine learning approach to ...
The NASA Goddard Earth Observing System (GEOS) data assimilation system (DAS) has been expanded to i...
We present a new high-resolution global composition forecast system produced by NASA's Global Modeli...
We present a computationally efficient adaptive method for calculating the time evolution of the con...
Atmospheric chemistry is central to many environmental issues such as air pollution, climate change,...
Atmospheric chemistry is a high-dimensionality, large-data problem and thus may be suited to machine...
Atmospheric chemistry models are a central tool to study the impact of chemical constituents on the ...
Atmospheric chemistry models are a central tool to study and forecast the impact of air pollution on...
Chemical transport models (CTMs) are used to improve our understanding of the complex processes infl...
Atmospheric chemistry models are a central tool to study the impact of chemical constituents on the ...
NASA's Goddard Earth Observing System (GEOS) Earth System Model (ESM) is a modular, general circulat...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
We provide an introduction to a new high-resolution (0.25 degree) global composition forecast produc...
Thesis (Ph.D.)--University of Washington, 2023Global atmospheric chemistry is an exceptionally high-...
The NASA GEOS composition forecast model (GEOS-CF) provides global, high-resolution (25 km) air qual...
Data assimilation is used in atmospheric chemistry models to improve air quality forecasts, construc...
The NASA Goddard Earth Observing System (GEOS) data assimilation system (DAS) has been expanded to i...
We present a new high-resolution global composition forecast system produced by NASA's Global Modeli...
We present a computationally efficient adaptive method for calculating the time evolution of the con...
Atmospheric chemistry is central to many environmental issues such as air pollution, climate change,...
Atmospheric chemistry is a high-dimensionality, large-data problem and thus may be suited to machine...
Atmospheric chemistry models are a central tool to study the impact of chemical constituents on the ...
Atmospheric chemistry models are a central tool to study and forecast the impact of air pollution on...
Chemical transport models (CTMs) are used to improve our understanding of the complex processes infl...
Atmospheric chemistry models are a central tool to study the impact of chemical constituents on the ...
NASA's Goddard Earth Observing System (GEOS) Earth System Model (ESM) is a modular, general circulat...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
We provide an introduction to a new high-resolution (0.25 degree) global composition forecast produc...
Thesis (Ph.D.)--University of Washington, 2023Global atmospheric chemistry is an exceptionally high-...
The NASA GEOS composition forecast model (GEOS-CF) provides global, high-resolution (25 km) air qual...
Data assimilation is used in atmospheric chemistry models to improve air quality forecasts, construc...
The NASA Goddard Earth Observing System (GEOS) data assimilation system (DAS) has been expanded to i...
We present a new high-resolution global composition forecast system produced by NASA's Global Modeli...
We present a computationally efficient adaptive method for calculating the time evolution of the con...